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arxiv: 1503.05055 · v1 · pith:T2SHGL3Inew · submitted 2015-03-17 · 💻 cs.AI

Combining partially independent belief functions

classification 💻 cs.AI
keywords sourcescombinationrulesfunctionsbeliefdegreeevidentialindependence
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The theory of belief functions manages uncertainty and also proposes a set of combination rules to aggregate opinions of several sources. Some combination rules mix evidential information where sources are independent; other rules are suited to combine evidential information held by dependent sources. In this paper we have two main contributions: First we suggest a method to quantify sources' degree of independence that may guide the choice of the more appropriate set of combination rules. Second, we propose a new combination rule that takes consideration of sources' degree of independence. The proposed method is illustrated on generated mass functions.

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